Two-step Smoothing Estimation of the Time-variant Parameter with Application to Temperature Data

Authors

  • Mohammad Patwary Department of Statistics‎, ‎University of Texas at Dallas‎, ‎USA
  • Mohammed Chowdhury Department of Statistics and Analytical Sciences‎, ‎KSU‎, ‎Georgia‎, ‎USA
  • ‎Lewis VanBrackle Department of Statistics and Analytical Sciences‎, ‎KSU‎, ‎Georgia‎, ‎USA
Abstract:

‎In this article‎, ‎we develop two nonparametric smoothing estimators for parameter of a time-variant parametric model‎. ‎This parameter can be from any parametric family or from any parametric or semi-parametric regression model‎. ‎Estimation is based on a two-step procedure‎, ‎in which we first get the raw estimate of the parameter at a set of disjoint time points and then compute the final estimator at any time by smoothing the raw estimators‎. ‎We will call these estimators two-step local polynomial smoothing estimator and two-step kernel smoothing estimator‎. ‎We derive these two two-step smoothing estimators by modeling raw estimates of the time-variant parameter from any regression model or probability model and then establish a mathematical relationship between these two estimators‎. ‎Our two-step estimation method is applied to temperature data from Dhaka‎, ‎the capital city of Bangladesh‎. ‎Extensive simulation studies under different cross-sectional and longitudinal frameworks have been conducted to check the finite sample MSE of our estimators‎. ‎Narrower bootstrap confidence bands and smaller MSEs from application and simulation results show the superiority of the local polynomial smoothing estimator over the kernel smoothing estimator‎. 

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Journal title

volume 16  issue None

pages  33- 50

publication date 2017-12

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